Abstract

Deep learning methods have been shown to significantly improve the performance of building extraction from optical remote sensing imagery. However, keeping the morphological characteristics, especially the boundaries, is still a challenge that requires further study. In this paper, we propose a novel fully convolutional network (FCN) for accurately extracting buildings, in which a boundary learning task is embedded to help maintain the boundaries of buildings. Specifically, in the training phase, our framework simultaneously learns the extraction of buildings and boundary detection and only outputs extraction results while testing. In addition, we introduce spatial variation fusion (SVF) to establish an association between the two tasks, thus coupling them and making them share the latent semantics and interact with each other. On the other hand, we utilize separable convolution with a larger kernel to enlarge the receptive fields while reducing the number of model parameters and adopt the convolutional block attention module (CBAM) to boost the network. The proposed framework was extensively evaluated on the WHU Building Dataset and the Inria Aerial Image Labeling Dataset. The experiments demonstrate that our method achieves state-of-the-art performance on building extraction. With the assistance of boundary learning, the boundary maintenance of buildings is ameliorated.

Highlights

  • IntroductionBuilding extraction from optical remote sensing imagery is one of the fundamental tasks in remote sensing, which plays a key role in many applications, such as urban planning and construction, natural crisis and disaster management, and population and regional development [1,2,3]

  • The experiments demonstrate that our method achieves state-of-theart performance on building extraction

  • Building extraction from optical remote sensing imagery is one of the fundamental tasks in remote sensing, which plays a key role in many applications, such as urban planning and construction, natural crisis and disaster management, and population and regional development [1,2,3]

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Summary

Introduction

Building extraction from optical remote sensing imagery is one of the fundamental tasks in remote sensing, which plays a key role in many applications, such as urban planning and construction, natural crisis and disaster management, and population and regional development [1,2,3]. The years of development of Earth observation technology have made high-quality remote sensing images available, and the spatial resolution and elaborate spectral, structure, and texture information of objects are increasingly being represented [4]. These make various objects in the imagery distinguishable and make accurate extraction of buildings possible. During the past several decades, the major methods for building extraction from aerial or satellite imagery consisted of designing features (spectrum, edge, shape, shadow, and so on) that could best represent buildings [5]. Hu et al [8] proposed an enhanced morphological building index for automatic building extraction based on shape characteristics. Ok et al [9]

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